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I've wrote a python script that need to pass millions of items to a C program and receive its output many times in a short period (pass from 1 up to 10 millions of vertices data (integer index and 2 float coords) rapidly 500 times, and each time the python script call the C program, i need to store the returned values in variables). I already implemented a way reading and writing text and or binary files, but it's slow and not smart(why write files to hdd while you don't need to store the data after the python script terminates?). I tried to use pipes, but for large data they gave me errors... So, by now i think the best way can be using the ability of ctypes to load functions in .dll Since i've never created a dll, i would like to know how to set it up (i know many ide have a template for this, but my wxdev-c++ crashes when i try to open it. Right now i'm downloading Code::Blocks )

Can you tell me if the solution i'm starting to implement is right, or if there is a better solution? The 2 functions i need to call in python are these

void find_vertex(vertex *list, int len, vertex* lower, vertex* highter)
{
    int i;
    *lower=list[0];
    *highter=list[1];
    for(i=0;i<len;i++)
    {
        if ((list[i].x<=lower->x) && (list[i].y<=lower->y))
            *lower=list[i];
        else
        {
            if ((list[i].x>=highter->x) && (list[i].y>=highter->y))
                *highter=list[i];
        }
    }
}

and

vertex *square_list_of_vertex(vertex *list,int len,vertex start, float size)
{
    int i=0,a=0;
    unsigned int *num;
    num=(int*)malloc(sizeof(unsigned int)*len);
    if (num==NULL)
    {
        printf("Can't allocate the memory");
        return 0;
    }
    //controlls which points are in the right position and adds their index from the main list in another list
    for(i=0;i<len;i++)
    {
        if ((list[i].x-start.x)<size && (list[i].y-start.y<size))
        {
            if (list[i].y-start.y>-size/100)
            {
                num[a]=i;
                a++;//len of the list to return
            }
        }
    }

    //create the list with the right vertices
    vertex *retlist;
    retlist=(vertex*)malloc(sizeof(vertex)*(a+1));
    if (retlist==NULL)
    {
        printf("Can't allocate the memory");
        return 0;
    }
    //the first index is used only as an info container
    vertex infos;
    infos.index=a+1;
    retlist[0]=infos;

    //set the value for the return pointer
    for(i=1;i<=a;i++)
    {
        retlist[i]=list[num[i-1]];
    }

    return retlist;
}

EDIT: forgot to post the type defintion of vertex

typedef struct{
    int index;
    float x,y;
} vertex;

EDIT2: I'll redistribute the code, so i prefer not to use external modules in python and external programs in C. Alsa i want try to keep the code cross platform. The script is an addon for a 3D app, so the less it uses external "stuff" the better it is.

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1  
"for large data they gave me errors"? Please be specific. What errors? Pipes can handle an large volume of data, limited only by OS memory. –  S.Lott Feb 14 '11 at 22:09
1  
Even assuming only 1 million items per vertix and optimal memory layout, you'd need about 5.6 GB (not GiB) if Google's calculator doesn't betray me. You propably can't store this RAM unless you have some supercomputer at your command. –  delnan Feb 14 '11 at 22:15
1  
@delnan: 1 million vertices is only 16 MB in C, and 104 MB in Python. –  Rosh Oxymoron Feb 14 '11 at 22:27
    
@S. Lott stackoverflow.com/questions/4979421/… Keeps giving error 32 pipe broken @delnan 1'188'100 vertices saved in a binary file are 13,5 MB (14.257.200 byte)(it's just a struct.Struct('iff') for each vertex). So maybe the google calculator failed ;) (i read the size of the file after saving them to file with a script and looking at the properties of the file) –  Makers_F Feb 14 '11 at 22:28
2  
The C data type float has only 4 bytes. The Python type float corresponds to the C type double and has 8 bytes. –  Sven Marnach Feb 14 '11 at 22:59

7 Answers 7

up vote 7 down vote accepted

Using ctypes or Cython to wrap your C functions is definitely the way to go. That way, you won't even need to copy the data between the C and Python code -- both the C and the Python part run within the same process and access the same data. Let's stick with ctypes, since this is what you suggested. Additionally, using NumPy will make this a lot more comfortable.

I infer your vertex type looks like this:

typedef struct
{
    int index;
    float x, y;
} vertex;

To have these vertices in a NumPy array, you can define a record "dtype" for it:

vertex_dtype = [('index', 'i'), ('x', 'f'), ('y', 'f')]

Also define this type as a ctypes structure:

class Vertex(ctypes.Structure):
    _fields_ = [("index", ctypes.c_int),
                ("x", ctypes.c_float),
                ("y", ctypes.c_float)]

Now, the ctypes prototype for your function find_vertex() would look like this:

from numpy.ctypeslib import ndpointer
lib = ctypes.CDLL(...)
lib.find_vertex.argtypes = [ndpointer(dtype=vertex_dtype, flags="C_CONTIGUOUS"),
                            ctypes.c_int,
                            ctypes.POINTER(Vertex),
                            ctypes.POINTER(Vertex)]
lib.find_vertex.restypes = None

To call this function, create a NumPy array of vertices

vertices = numpy.empty(1000, dtype=vertex_dtype)

and two structures for the return values

lower = Vertex()
higher = Vertex()

and finally call your function:

lib.find_vertex(vertices, len(vertices), lower, higher)

NumPy and ctypes will take care of passing the pointer to the beginning of the data of vertices to your C function -- no copying required.

Probably, you will have to read a bit of documentation on ctypes and NumPy, but I hope this answer helps you to get started with it.

share|improve this answer
    
Yes, i already used the cytpe structure while trying to use popen function. Since with ctypes we can call functions, create arrays and pointes, why should i use NumPy(that is an external module and then need to be installed on every machine that wants to run the code)? If possible i prefer to use only standard modules.. –  Makers_F Feb 14 '11 at 23:17
    
@Makers_F: It is possible to do it without NumPy. Handling and memory management of ctypes arrays is very error-prone though, and it is very hard to debug. Furthermore, with NumPy you can efficiently do many things in Python which otherwise would have to be done in C. Pretty much anyone handling large uniform arrays in Python uses NumPy, and I do consider it quite "standard". –  Sven Marnach Feb 14 '11 at 23:31

It seems like what you really want is to turn your C program into a Python module. Here is a tutorial that will get you started.

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If you want to pass data between two programs, and you already have the code to use a file, why not just use a RAMdisk? For Windows, you can use something like http://www.ltr-data.se/opencode.html/#ImDisk to create the RAMdisk and you can use the commands listed here for Linux. For smallish amounts of data (anything that will fit in RAM without requiring to be constantly paged out), this should outperform disk-based operations by a couple of orders of magnitude.

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Yes, it was one of my first thoughts. I edited my first answer, look at it :) In addition, in my case i don't need the 2 programs to "communicate", but more simply the python program have to call the C program passing him some data, and after it finished read the returned value. The os.system or subprocess.call would be the best thing if they only can handle big quantities of data.. I know in linux there are built in commands to create ramdisks, the problem then is windows, and i want not to use external programs.. –  Makers_F Feb 14 '11 at 22:46

Iterating over millions of items is the worst possible operation you could do in Python... If at all possible write this portion of the program in C or C++, it will be 100's of times faster and use 100's of times less memory...

I love python, but it's not a best solution for this type of operation.

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Yeah, i'm totally with you, and if i only can i would. The problems are: 1) the script works as an addon of a program with a python api that interfaces with the C data of the program. I can get the address in memory stored by the program (it is written in C)of the data i want to use(the vertex), but even if i pass it to my C program i wouldn't be able to access it because of the memory space limitation. In addition, even if the program is open source, i don't know enough his structure to know how to handle the data, so i discarded this way.. –  Makers_F Feb 14 '11 at 23:03

If you can, make the Python program buffer the data that it is sending so that it does not send every vertex one by one. Save them up until there are 100 or 500 or 1000 and that way you will make fewer calls. Do some timing tests to determine optimal buffer size.

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I think I would use a library like sysv ipc for this job and simply map the data to a shared memory segment.

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Another thing i thought about. If there is a way to use it without external programs i can definitely go with this! –  Makers_F Feb 14 '11 at 22:50
    
@Makers_F Yes , IPC means interprocess communication, it is designed for sharing data between processes. –  stacker Feb 15 '11 at 7:18

Here's a variant that uses Cython to write an extension module for CPython.

C declarations to be used in Cython:

# file: cvertex.pxd
cdef extern from "vertex.h":
    ctypedef struct vertex:
        int index
        float x,y
    void find_vertex(vertex *list, int len, vertex* lower, vertex* highter)

Where vertex.h is:

typedef struct{
    int index;
    float x,y;
} vertex;

void find_vertex(vertex *list, int len, vertex* lower, vertex* highter);

Cython implementation to be used in Python:

# file: pyvertex.pyx
cimport numpy
cimport cvertex # use declarations from cvertex.pxd

def find_vertex(numpy.ndarray[cvertex.vertex,ndim=1,mode="c"] vertices):
    if len(vertices) < 2:
        raise ValueError('provide at least 2 vertices')

    cdef cvertex.vertex lower, highter
    cvertex.find_vertex(<cvertex.vertex*>vertices.data, len(vertices),
                        &lower, &highter)
    return lower, highter # implicitly convert to dicts

To compile the extension, run:

$ python setup.py build_ext -i

Where setup.py is:

from distutils.core import setup
from distutils.extension import Extension
from Cython.Distutils import build_ext

setup(
    cmdclass = {'build_ext': build_ext},
    ext_modules = [Extension("vertex", ["pyvertex.pyx", "vertex.c"])]
)

Now the extension can be used from Python:

import numpy
import vertex # import the extension

n = 10000000
vertex_list = numpy.zeros(n, dtype=[('index', 'i'), ('x', 'f'), ('y', 'f')])
i = n//2
vertex_list[i] = i, 1, 1
v1, v2 = vertex.find_vertex(vertex_list)
print(v2['index'])
print(v1, v2)
Output
5000000
{'y': 0.0, 'index': 0, 'x': 0.0} {'y': 1.0, 'index': 5000000, 'x': 1.0}
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